This dataset contains anonymized layer 1-4 packet headers of two-way passive traces captured on a 100 GB link between Los Angeles and San Jose. These data are useful for research on the characteristics of Internet traffic, including application breakdown, security events, geographic and topological distribution, flow volume and duration.
more »
« less
Anonymized Two-Way Traffic Packet Header Traces 100G (5 sec) sampler
This dataset contains anonymized layer 1-4 packet headers of two-way passive traces captured on a 100 GB link between Los Angeles and San Jose. These data are useful for research on the characteristics of Internet traffic, including application breakdown, security events, geographic and topological distribution, flow volume and duration. Passive 100G sampler is offered to researchers at commercial organizations when they request Anonymized Internet Traces. These data are part of the 2024 Anonymized Traces 100G dataset. The files consist of 5 second snapshots of a bidirectional capture taken in November 2024.
more »
« less
- PAR ID:
- 10616744
- Publisher / Repository:
- CAIDA UCSD
- Date Published:
- Subject(s) / Keyword(s):
- Anonymized Internet traces Internet two-way traffic 100 GB link
- Format(s):
- Medium: X Size: 837 MB Other: pcap
- Size(s):
- 837 MB
- Right(s):
- CAIDA UCSD; The Regents of the University of California
- Institution:
- CAIDA
- Sponsoring Org:
- National Science Foundation
More Like this
-
-
This dataset contains anonymized layer 1-4 packet headers of two-way passive traces captured on a 100 GB link between Los Angeles and Dallas. These data are useful for research on the characteristics of Internet traffic, including application breakdown, security events, geographic and topological distribution, flow volume and duration.more » « less
-
The Internet has never been more important to our society, and understanding the behavior of the Internet is essential. The Center for Applied Internet Data Analysis (CAIDA) Telescope observes a continuous stream of packets from an unsolicited darkspace representing 1/256 of the Internet. During 2019 and 2020 over 40,000,000,000,000 unique packets were collected representing the largest ever assembled public corpus of Internet traffic. Using the combined resources of the Supercomputing Centers at UC San Diego, Lawrence Berkeley National Laboratory, and MIT, the spatial temporal structure of anonymized source-destination pairs from the CAIDA Telescope data has been analyzed with GraphBLAS hierarchical hyper-sparse matrices. These analyses provide unique insight on this unsolicited Internet darkspace traffic with the discovery of many previously unseen scaling relations. The data show a significant sustained increase in unsolicited traffic corresponding to the start of the COVID19 pandemic, but relatively little change in the underlying scaling relations associated with unique sources, source fan-outs, unique links, destination fan-ins, and unique destinations. This work provides a demonstration of the practical feasibility and benefit of the safe collection and analysis of significant quantities of anonymized Internet traffic.more » « less
-
This dataset includes anonymized interview data about the provision of water services in rural Alaska, focused on holistically understanding water service challenges using a systems approach. Eighteen semi-structured interviews with 19 stakeholders involved in the provision of water services in rural Alaska are included. These interviews were conducted from January 25th to June 28th, 2021. Interviews were conducted via teleconferencing or phone and were recorded (with permission), transcribed, checked for quality, and anonymized. Interview data was analyzed using a deductive-inductive qualitative content analysis. The data supported the following research objectives: 1) identify challenges within the financial, human, natural, and technical systems involved in the provision of water services in rural Alaska, and 2) use a systems thinking approach to identify interdependencies between systems.more » « less
An official website of the United States government
